JSM 2015 Preliminary Program

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Legend: Washington State Convention Center = CC, Sheraton Seattle = S, Grand Hyatt = GH and The Conference Center = TCC
* = applied session       ! = JSM meeting theme

Activity Details

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CE_38T Wed, 8/12/2015, 3:00 PM - 4:45 PM S-Grand Ballroom B
Improve Your Regression with Modern Regression Analysis Techniques: Linear, Logistic, Nonlinear, Regularized, GPS, LARS, LASSO, Elastic Net, MARS, TreeNet Gradient Boosting, Random Forests (ADDED FEE) — Professional Development Computer Technology Workshop
ASA , Salford Systems
Linear regression plays a big part in the everyday life of a data analyst, but the results aren't always satisfactory. What if you could drastically improve prediction accuracy in your regression with a new model that handles missing values, interactions, AND nonlinearities in your data? Instead of proceeding with a mediocre analysis, join us for this presentation, which will show you how modern regression analysis techniques can take your regression model to the next level and expertly handle your modeling woes. Using real-world data sets, we will demonstrate advances in nonlinear, regularized linear, and logistic regression. This workshop will introduce the main concepts behind Leo Breiman's Random Forests and Jerome Friedman's GPS (Generalized Path Seeker), MARS (Multivariate Adaptive Regression Splines), and Gradient Boosting. With these state-of-the-art techniques, you'll boost model performance without stumbling over confusing coefficients or problematic p-values! All attendees will receive six months access to fully functional versions of the the SPM Salford Predictive Modeler software suite
Instructor(s): Kaitlin Onthank, Ling Chen




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For Professional Development information, contact the Education Department.

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